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Segmentation of computer tomography image using local robust statistics and region-scalable fitting

机译:使用局部鲁棒统计量和区域可缩放拟合对计算机断层图像进行分割

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摘要

Intensity inhomogeneity may cause considerable difficulties in segmentation of CT image. In order to overcome the difficulties caused by intensity inhomogeneity, the region-scalable fitting (RSF) model was put forward. RSF model draws upon intensity information in local regions with a controllable scale. But only using intensity information may lead to slow convergence rate and poor denoise ability. Combining the method of robust statistics, RSF model is improved in this paper. In the improved model, the intensity in RSF model is replaced with local robust statistics which is the weighted combination of inter-quartile range, mean absolute deviation and intensity median in local region. Inter-quartile range and mean absolute deviation in local region are introduced to sharpen object boundaries, and intensity median in local region is introduced to reduce image noise. The contrast experiments between RSF model and the improved model are provided, which demonstrate the fast convergence rate and robustness to noise of the improved model.
机译:强度不均匀可能会在CT图像分割中造成相当大的困难。为了克服强度不均匀性带来的困难,提出了区域可缩放拟合(RSF)模型。 RSF模型以可控制的规模利用局部区域的强度信息。但是仅使用强度信息可能会导致收敛速度慢和降噪能力差。结合鲁棒统计方法,对RSF模型进行了改进。在改进的模型中,RSF模型中的强度被替换为局部鲁棒统计量,后者是四分位数间距,平均绝对偏差和局部强度中值的加权组合。引入四分位数间距和局部区域的平均绝对偏差以锐化对象边界,并引入局部区域的强度中值以减少图像噪声。提供了RSF模型和改进模型之间的对比实验,证明了改进模型的快速收敛速度和对噪声的鲁棒性。

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